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Subband correlation for EEG data in the dual tree complex wavelet transform domain for the detection of epilepsy and seizure

机译:双树复小波变换域中脑电数据的子带相关性,用于检测癫痫和癫痫发作

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摘要

In this paper, a comprehensive analysis of electroencephalogram (EEG) signals is carried out in the dual tree complex wavelet transform domain using a publicly available EEG database. It is shown that maximum cross-correlation among the sub-bands along with the absolute values of the corresponding correlation coefficient and co-variance can be effective in distinguishing EEG signals such as seizure and non-seizure. Thus, these quantities may be used to characterize EEG signals to realize the underlying diverse process of EEG recordings and help the researchers in developing improved classifiers for the detection of epilepsy and seizure.
机译:在本文中,使用公共可用的EEG数据库在双树复数小波变换域中对脑电图(EEG)信号进行了全面分析。结果表明,子带之间的最大互相关以及相应的相关系数和协方差的绝对值可以有效区分癫痫发作和非癫痫发作等脑电信号。因此,这些量可用于表征脑电信号,以实现潜在的脑电记录的多样化过程,并帮助研究人员开发改进的分类器以检测癫痫和癫痫发作。

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